Affiliation:
1. Massachusetts Institute of Technology, Cambridge, MA, USA
Abstract
In this paper, the question of interest is estimating
true
demand of a product at a given store location and time period in the retail environment based on a
single
noisy and potentially censored observation. To address this question, we introduce a %non-parametric framework to make inference from multiple time series. Somewhat surprisingly, we establish that the algorithm introduced for the purpose of "matrix completion" can be used to solve the relevant inference problem. Specifically, using the Universal Singular Value Thresholding (USVT) algorithm [7], we show that our estimator is consistent: the average mean squared error of the estimated average demand with respect to the true average demand goes to
0
as the number of store locations and time intervals increase to $\infty$. We establish naturally appealing properties of the resulting estimator both analytically as well as through a sequence of instructive simulations. Using a real dataset in retail (Walmart), we argue for the practical relevance of our approach.
Funder
Defense Advanced Research Projects Agency
National Science Foundation
Publisher
Association for Computing Machinery (ACM)
Subject
Computer Networks and Communications,Hardware and Architecture,Safety, Risk, Reliability and Quality,Computer Science (miscellaneous)
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4. Gah-Yi Ban. 2015. The data-driven (s S) policy: The data-driven (s S) policy: The data driven (s S) policy: why you can have confidence in censored demand data. Available at SSRN: https://ssrn.com/abstract=2654014 (2015). Gah-Yi Ban. 2015. The data-driven (s S) policy: The data-driven (s S) policy: The data driven (s S) policy: why you can have confidence in censored demand data. Available at SSRN: https://ssrn.com/abstract=2654014 (2015).
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